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Korean Journal of Dermatology ; : 421-425, 2018.
Article Dans Coréen | WPRIM | ID: wpr-716124

Résumé

BACKGROUND: Acne is a chronic inflammatory disease of the pilosebaceous unit, mainly on the face. It can have various clinical manifestations and should be appropriately treated based on the severity. In Korea, the ‘Korea Acne Severity Rating System (KAGS)’ is a standardized index to determine the severity of acne according to specific Korean characteristics. However, the actual use of the KAGS in clinical settings has been limited. OBJECTIVE: We sought to analyze whether we could effectively measure acne severity using a deep learning algorithm, which is an image learning method. METHODS: Acne severity was classified into three levels of mild, moderate, and severe based on the KAGS, and learning and verification were performed using the CNN (Convolutional Neural Network), a deep learning technique. RESULTS: GoogLeNet's Inception-v3 algorithm showed the highest accuracy at 86.7%. CONCLUSION: This study confirmed that the use of a deep learning algorithm may facilitate the scoring of acne severity.


Sujets)
Acné juvénile , Corée , Apprentissage , Méthodes
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